20568 - EMPIRICAL METHODS FOR INNOVATION STRATEGIES
Department of Management and Technology
SANDEEP DEVANATHA PILLAI
Suggested background knowledge
Mission & Content Summary
MISSION
CONTENT SUMMARY
- A summary of tools to make data-driven managerial decisions: from correlation and tests of hypotheses to regressions and causal relations.
- Advanced tools (textual analysis, machine learning).
- Group project.
- Data analyses and exercises.
Expected Teaching Schedule
Class | Topic |
1 | Python 1: variables and strings |
2 | Python 2: lists and sets |
3 | Python 3: dictionaries |
4 | Python 4: if-statements |
5 | Python 5: for-loops |
6 | Python 6: text classification |
7 | Basic Stats |
8 | OLS-1 |
9 | OLS-2 |
10 | In-class exercise |
11 | Non-Linear Y |
12 | Practice |
MID TERM BREAK | |
13 | Practice |
14 | In-class exercise |
15 | Tobit & Diff in Diff |
16 | Practice |
17 | Instrumental Variable |
18 | Practice |
19 | Final project consultation |
20 | Practice |
21 | Final project consultation |
22 | In-class exercise |
23 | Final project presentations |
24 | Final project presentations |
Intended Learning Outcomes (ILO)
KNOWLEDGE AND UNDERSTANDING
- Learn how to use Python to make data-driven managerial decisions.
- Learn how to use econometric tools in practice using large datasets.
APPLYING KNOWLEDGE AND UNDERSTANDING
- Understand the basis to make data-driven managerial decisions.
Teaching methods
- Lectures
- Practical Exercises
- Individual works / Assignments
- Collaborative Works / Assignments
- Interaction/Gamification
DETAILS
For attending students learning in the course depends mostly on the development of a group project throughout the course. The group project employs real data to address a concrete managerial problem. Lectures, discussions in class about the projects developed by each group enhance the learning opportunities of the attending students.
Assessment methods
Continuous assessment | Partial exams | General exam | |
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ATTENDING STUDENTS
- Group project accounts for about 60%
- Individual assessments for about 40%.
The evaluation of the attending students is based on three in-class exercises plus a final empirical project produced in groups and presented in class. During the final presentation, each member of the group will be asked to present and contribute to the discussion. You will be considered as an attending student if you complete the exercises and submit the final project. In-class attendance will NOT be taken. However, class attendance is strongly encouraged. In the past, students who show up to class have out-performed those who do not by a substantial margin.
Expected grading scheme
Activity | Points |
Best 2 out of 3 in-class exercises | 10 |
Final project report | 12 |
Final project presentation | 3 |
Project peer evaluation | 5 |
Bonus: Usage of data from proprietary databases subscribed to by Bocconi Library. Examples include Compustat, Bloomberg, etc. You are allowed to use non-proprietary and publicly available databases from the internet for your project - but you will not get the bonus point. | 1 |
Total | 31 |
NOT ATTENDING STUDENTS
The evaluation of the non-attending students will be based on a closed book written exam consisting of questions on both the theoretical and programming aspects of the course. In the past, non-attending students have performed poorly in this course.
Teaching materials
ATTENDING STUDENTS
- Lecture slides.
- General references for some of the more technical material (not required for the exam, but useful for consultation).
- Jupyter notebooks.
NOT ATTENDING STUDENTS
- Lecture slides and references to specific articles and similar material.
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General references for some of the more technical material (not required for the exam, but useful for consultation).
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Jupyter notebooks.
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Text Books